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𝗣𝗮𝗶𝗱 𝗖𝗼𝘂𝗿𝘀𝗲 𝗙𝗥𝗘𝗘 (PART - 1 + 2 + 3 )
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Is Your Model Data Deficient?
Here's how to test it 🧩
At times, no matter how much we try, the model performance barely improves:
- Feature engineering is giving marginal improvement.
- Trying different models does not produce satisfactory results either.
- and more…
This might indicate that we don't have enough data.
As gathering data can be time-consuming, it would be good to get some insights into whether more data will likely help or not.
Try this technique:
1) Divide the training dataset into “k” equal parts. The validation set remains as is.
↳ “k” does not have to be super large.
↳ A number between 7 to 12 is typically fine depending on how much data you have.
2) Train models cumulatively on the above subsets and measure performance on the validation set:
↳ Train a model on the first subset and evaluate the validation set.
↳ Train a model on the first two subsets and evaluate the validation set.
↳ Train a model on the first three subsets and evaluate the validation set.
↳ And so on…
Plotting the validation performance (in increasing order of data) is likely to produce two types of lines.
- Scenario 1 (green line) conveys that adding more data is likely to increase model performance.
- Scenario 2 (red line) conveys that the model performance has already saturated. Adding more data will most likely not result in any considerable gains.
This way, we can determine whether the model is data deficient and gathering data will be helpful or not.
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